DIPPAS: a deep image prior PRNU anonymization scheme

IF 2.5 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
Picetti, Francesco, Mandelli, Sara, Bestagini, Paolo, Lipari, Vincenzo, Tubaro, Stefano
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引用次数: 9

Abstract

Source device identification is an important topic in image forensics since it allows to trace back the origin of an image. Its forensics counterpart is source device anonymization, that is, to mask any trace on the image that can be useful for identifying the source device. A typical trace exploited for source device identification is the photo response non-uniformity (PRNU), a noise pattern left by the device on the acquired images. In this paper, we devise a methodology for suppressing such a trace from natural images without a significant impact on image quality. Expressly, we turn PRNU anonymization into the combination of a global optimization problem in a deep image prior (DIP) framework followed by local post-processing operations. In a nutshell, a convolutional neural network (CNN) acts as a generator and iteratively returns several images with attenuated PRNU traces. By exploiting straightforward local post-processing and assembly on these images, we produce a final image that is anonymized with respect to the source PRNU, still maintaining high visual quality. With respect to widely adopted deep learning paradigms, the used CNN is not trained on a set of input-target pairs of images. Instead, it is optimized to reconstruct output images from the original image under analysis itself. This makes the approach particularly suitable in scenarios where large heterogeneous databases are analyzed. Moreover, it prevents any problem due to the lack of generalization. Through numerical examples on publicly available datasets, we prove our methodology to be effective compared to state-of-the-art techniques.
DIPPAS:一种深度图像先验PRNU匿名化方案
源设备识别是图像取证中的一个重要主题,因为它可以追溯到图像的起源。它的对应物是源设备匿名化,也就是说,掩盖图像上可能对识别源设备有用的任何痕迹。用于源设备识别的典型痕迹是光响应非均匀性(PRNU),这是设备在获取的图像上留下的噪声模式。在本文中,我们设计了一种方法来抑制自然图像中的这种痕迹,而不会对图像质量产生重大影响。明确地,我们将PRNU匿名化转化为深度图像先验(DIP)框架中的全局优化问题和局部后处理操作的结合。简而言之,卷积神经网络(CNN)作为一个生成器,迭代地返回几个带有衰减PRNU迹的图像。通过对这些图像进行直接的局部后处理和组装,我们生成的最终图像相对于源PRNU是匿名的,仍然保持高视觉质量。对于广泛采用的深度学习范式,所使用的CNN不是在一组输入-目标图像对上进行训练的。相反,它被优化为从被分析的原始图像本身重建输出图像。这使得该方法特别适用于分析大型异构数据库的场景。此外,它还可以防止由于缺乏泛化而产生的任何问题。通过公开数据集上的数值例子,我们证明了我们的方法与最先进的技术相比是有效的。
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来源期刊
EURASIP Journal on Information Security
EURASIP Journal on Information Security COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
8.80
自引率
0.00%
发文量
6
审稿时长
13 weeks
期刊介绍: The overall goal of the EURASIP Journal on Information Security, sponsored by the European Association for Signal Processing (EURASIP), is to bring together researchers and practitioners dealing with the general field of information security, with a particular emphasis on the use of signal processing tools in adversarial environments. As such, it addresses all works whereby security is achieved through a combination of techniques from cryptography, computer security, machine learning and multimedia signal processing. Application domains lie, for example, in secure storage, retrieval and tracking of multimedia data, secure outsourcing of computations, forgery detection of multimedia data, or secure use of biometrics. The journal also welcomes survey papers that give the reader a gentle introduction to one of the topics covered as well as papers that report large-scale experimental evaluations of existing techniques. Pure cryptographic papers are outside the scope of the journal. Topics relevant to the journal include, but are not limited to: • Multimedia security primitives (such digital watermarking, perceptual hashing, multimedia authentictaion) • Steganography and Steganalysis • Fingerprinting and traitor tracing • Joint signal processing and encryption, signal processing in the encrypted domain, applied cryptography • Biometrics (fusion, multimodal biometrics, protocols, security issues) • Digital forensics • Multimedia signal processing approaches tailored towards adversarial environments • Machine learning in adversarial environments • Digital Rights Management • Network security (such as physical layer security, intrusion detection) • Hardware security, Physical Unclonable Functions • Privacy-Enhancing Technologies for multimedia data • Private data analysis, security in outsourced computations, cloud privacy
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